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Improving SVDD classification performance on hyperspectral images via correlation based ensemble technique

机译:通过基于相关的集成技术提高高光谱图像的SVDD分类性能

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Support Vector Data Description (SVDD) is a nonparametric and powerful method for target detection and classification. The SVDD constructs a minimum hypersphere enclosing the target objects as much as possible. It has advantages of sparsity, good generalization and using kernel machines. In many studies, different methods have been offered in order to improve the performance of the SVDD. In this paper, we have presented ensemble methods to improve classification performance of the SVDD in remotely sensed hyperspectral imagery (HSI) data. Among various ensemble approaches we have selected bagging technique for training data set with different combinations. As a novel technique for weighting we have proposed a correlation based weight coefficients assignment. In this technique, correlation between each bagged classifier is calculated to give coefficients to weighted combinators. To verify the improvement performance, two hyperspectral images are processed for classification purpose. The obtained results show that the ensemble SVDD has been found to be significantly better than conventional SVDD in terms of classification accuracy. (C) 2016 Elsevier Ltd. All rights reserved.
机译:支持向量数据描述(SVDD)是一种非参数有效的目标检测和分类方法。 SVDD构造了一个最小的超球,它尽可能多地包围目标对象。它具有稀疏性,通用性好和使用内核机器的优势。在许多研究中,已经提供了不同的方法来改善SVDD的性能。在本文中,我们提出了集成的方法来提高SVDD在遥感高光谱图像(HSI)数据中的分类性能。在各种集成方法中,我们选择了装袋技术来训练具有不同组合的数据集。作为一种新的加权技术,我们提出了一种基于相关性的加权系数分配。在这种技术中,计算每个袋装分类器之间的相关性以将系数提供给加权组合器。为了验证改进性能,处理了两个高光谱图像以进行分类。获得的结果表明,在分类精度方面,已经发现整体SVDD明显优于传统的SVDD。 (C)2016 Elsevier Ltd.保留所有权利。

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